2017
DOI: 10.3997/2214-4609.201700019
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Practical Example of Data Integration in a PRM Environment, BC-10, Brazil

Abstract: The double-hulled FPSO's design required significant power and heat delivery systems to drive the seabed lift equipment and process the heavy crudes. This development is the first of its kind based on full subsea oil and gas separation and subsea pumping. This system uses 1500-horsepower underwater pumps-each equivalent to a Formula One engine-to drive oil and a small quantity of gas to the surface. Phased development The first phase of the Parque das Conchas project included the development of three fields (A… Show more

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Cited by 5 publications
(3 citation statements)
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“…Although source mispositioning also had strong effect on NRMS for our study, our experience with processing of field data in the receiver domain shows that a dense shooting grid allows for a good wavefield reconstruction in a regular grid, which could severely reduce this non-repeatability impact. Since in practice the sources can be better handled during processing (and also because there are no currently engineering solutions for achieving actual perfect repeatability on the source side), the efforts to reduce the NRMS should be focused on improving receiver repeatability -via reducing OBN positioning uncertainty (Hatchell et al, 2019) or with the use of PRM systems (Thedy et al, 2013;Ebaid et al, 2017), for example. While the differences in the values in Table 1 seem small, even a minor NRMS improvement can significantly expand our ability to detect the time-lapse signal in the area (Mello et al, 2019).…”
Section: Discussionmentioning
confidence: 99%
“…Although source mispositioning also had strong effect on NRMS for our study, our experience with processing of field data in the receiver domain shows that a dense shooting grid allows for a good wavefield reconstruction in a regular grid, which could severely reduce this non-repeatability impact. Since in practice the sources can be better handled during processing (and also because there are no currently engineering solutions for achieving actual perfect repeatability on the source side), the efforts to reduce the NRMS should be focused on improving receiver repeatability -via reducing OBN positioning uncertainty (Hatchell et al, 2019) or with the use of PRM systems (Thedy et al, 2013;Ebaid et al, 2017), for example. While the differences in the values in Table 1 seem small, even a minor NRMS improvement can significantly expand our ability to detect the time-lapse signal in the area (Mello et al, 2019).…”
Section: Discussionmentioning
confidence: 99%
“…Permanent Reservoir Monitoring (PRM) systems comprise ocean bottom cables permanently installed on the seabed containing sensors, typically at 100m spacing along the cable, with the cables themselves arranged to cover the area of interest, and the whole system connected to a surface vessel, such as a FPSO. PRM systems installed in deepwater in the Brazilian Campos Basin at O-North (Ebaid, Wang, Seixas, Kumar, & et al, 2017) and Jubarte (Thedy & et al, 2015) have provided very high quality 4D seismic data. Here we consider fiber-optic systems, which are expected to be more reliable in the long term.…”
Section: Autonomous Marine Acquisition -Sensorsmentioning
confidence: 99%
“…The workflow is applied to a heavy oil reservoir offshore Brazil where hundreds of stochastic simulations of the reservoir model are available. There is a wealth of studies that prove the advantages of 4D seismic data for a robust understanding of reservoir production activity in this heavy oil field (Buksh et al., 2015; Chen et al., 2015; Farmer et al., 2015; Galarraga et al., 2015; Ebaid et al., 2017; Maleki et al., 2019, 2021; Wang et al., 2017).…”
Section: Introductionmentioning
confidence: 99%